Comparison of SVM Optimization Techniques in the Primal
@article{Katzman2014ComparisonOS, title={Comparison of SVM Optimization Techniques in the Primal}, author={Jonathan Katzman and Diane Duros Hosfelt}, journal={ArXiv}, year={2014}, volume={abs/1406.7429} }
This paper examines the efficacy of different optimization techniques in a primal formulation of a support vector machine (SVM). Three main techniques are compared. The dataset used to compare all three techniques was the Sentiment Analysis on Movie Reviews dataset, from kaggle.com.
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